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Intelligent control technology for liquid-cooled data centers based on a dual-drive model integrating mechanism and data models

Author

Listed:
  • Qu, Shengli
  • Wang, Chuang
  • Ju, Chengcheng
  • Zhao, Yuya
  • Li, Yanpeng
  • Xing, Ziwen
  • Zhang, Lihua
  • Xiang, Ming

Abstract

Amidst the expanding infrastructure of the information age, cooling systems represent a substantial and growing portion of global data center energy consumption. Researchers have explored various methods to reduce energy consumption in these systems, with model-based intelligent optimization control being the most commonly employed approach. The most prevalent models in this field are thermodynamic mechanism models and data-driven models, yet each of these standalone models has its own advantages and limitations. Therefore, this study innovatively develops a dual-drive gray-box model that integrates mechanism and data models. It supplements data with a mechanism model possessing strong generalization capabilities to form a fusion sample library, and trains the fusion library using optimal data-driven algorithms. Finally, a proprietary optimization control logic is used and a lot of energy saving is realized under the premise of meeting the chip safety. Comparing mechanism-based models, data-driven models, and the dual-drive model reveals that the proposed dual-drive model combines the strong generalization capability, low data cost requirements, and high optimization reliability of mechanism-based models with the fast optimization efficiency and high model accuracy within the data collection range of data-driven models. Finally, experiments validate that the optimization control based on dual-drive model can maintain chips within safe upper limits while achieving substantial energy savings—up to 69.5% in Test Case 1. And comparing different cases, we can get the influence of resource scheduling uniformity on model-based optimal control logic. This unique optimization control framework based on the dual-drive model proposed by this paper resolves industry challenges in practical intelligent control implementation, offering novel insights for modeling data center cooling systems.

Suggested Citation

  • Qu, Shengli & Wang, Chuang & Ju, Chengcheng & Zhao, Yuya & Li, Yanpeng & Xing, Ziwen & Zhang, Lihua & Xiang, Ming, 2026. "Intelligent control technology for liquid-cooled data centers based on a dual-drive model integrating mechanism and data models," Energy, Elsevier, vol. 351(C).
  • Handle: RePEc:eee:energy:v:351:y:2026:i:c:s0360544226008686
    DOI: 10.1016/j.energy.2026.140765
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